Classification of hyperspectral images with nonlinear filtering and support vector machines

M. Lennon1, G. Mercier1, L. Hubert-Moy2
1Département ITI, École Nationale Supérieure des Télécommunications, Brest, France
2Laboratoire COSTEL UMR 6554, Université de Rennes, Rennes, France

Tóm tắt

Support vector machines, recently introduced in hyperspectral imagery, are applied to classify land cover on images from the airborne CASI sensor with a small training set. A smoothing preprocessing step is achieved, based on a vectorial extension of the anisotropic diffusion nonlinear filtering process. It allows the separability of the classes to be increased as well as homogeneous areas to be smoothed. It comes to take into consideration the spatial context before the classification, leading to improve the classification rate and to produce noiselessly classification maps with support vector machines.

Từ khóa

#Hyperspectral imaging #Filtering #Support vector machines #Support vector machine classification #Hyperspectral sensors #Smoothing methods #Anisotropic magnetoresistance #Signal to noise ratio #Image sensors #Parametric statistics